Abstract

Displacement predictions are essential to landslide early warning systems establishment. Most existing prediction methods are focused on finding an individual model that provides a better result. However, the limitation of generalization that is inherent in all models makes it difficult for an individual model to predict different cases accurately. In this study, a novel coupled method was proposed, combining the long short-term memory (LSTM) neural networks and support vector regression (SVR) algorithm with optimal weight. The Shengjibao landslide in the Three Gorges Reservoir area was taken as a case study. At first, the moving average method was used to decompose the cumulative displacement into two components: trend and periodic terms. Single-factor models based on LSTM neural networks and SVR algorithms were used to predict the trend terms of displacement, respectively. Multi-factors LSTM and SVR models were used to predict the periodic terms of displacement. Precipitation, reservoir water level, and previous displacement are considered as the candidate factors for inputs in the models. Additionally, ensemble models based on the SVR algorithm are used to predict the optimal weight to combine the results of the LSTM and SVR models. The results show that the LSTM models display better performance than SVR models; the ensemble model with optimal weight outperforms other models. The prediction accuracy can be further improved by also considering results from multiple models.

Highlights

  • Since the impoundment of the Three Gorges Reservoir area (TGRA) in June 2003, many new landslides have occurred and some existing landslides have been reactive

  • An ensemble model of the coupled long short-term memory (LSTM) and support vector regression (SVR) algorithm with the weight coefficients based on linear combination theory was established for prediction, and the ensemble model performed well

  • The monitoring data are fundamental for establishing landslide displacement prediction models, and the results of prediction are significant for landslide early warning

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Summary

Introduction

Since the impoundment of the Three Gorges Reservoir area (TGRA) in June 2003, many new landslides have occurred and some existing landslides have been reactive. The Shanshucao landslide took place on 2 September 2014, interrupting the power supply for the town and damaged around. 20 × 104 m2 area of orange planting [1]. The Honyanzi landslide took place on 24 June 2015, initiating a reservoir tsunami that resulted in two deaths and significant damage to shipping facilities [2]. Sci. 2020, 10, 7830 essential component for landslide early warning systems, displacement predictions become ever more important in the TGRA

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